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Label-aware Hard Negative Sampling Strategies with Momentum Contrastive Learning for Implicit Hate Speech Detection

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Detecting implicit hate speech that is not directly hateful remains a challenge. Recent research has attempted to detect implicit hate speech by applying contrastive learning to pre-trained language models such as BERT and RoBERTa, but the proposed models still do not have a significant advantage over cross-entropy loss-based learning. We found that contrastive learning based on randomly sampled batch data does not encourage the model to learn hard negative samples. In this work, we propose Label-aware Hard Negative sampling strategies (LAHN) that encourage the model to learn detailed features from hard negative samples, instead of naive negative samples in random batch, using momentum-integrated contrastive learning. LAHN outperforms the existing models for implicit hate speech detection both in- and cross-datasets. The code is available at https://github.com/Hanyang-HCC-Lab/LAHN

Jaehoon Kim, Seungwan Jin, Sohyun Park, Someen Park, Kyungsik Han• 2024

Related benchmarks

TaskDatasetResultRank
Implicit Hate Speech DetectionIHC
Macro-F178.4
5
Implicit Hate Speech DetectionSBIC
Macro-F183.98
5
Implicit Hate Speech DetectionDYNA
Macro-F179.64
5
Implicit Hate Speech DetectionHateval
Macro-F180.42
5
Implicit Hate Speech DetectionToxigen
Macro-F190.42
5
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